Zero-shot video editing using off-the-shelf image diffusion models

W Wang, Y Jiang, K Xie, Z Liu, H Chen, Y Cao… - arXiv preprint arXiv …, 2023 - arxiv.org
W Wang, Y Jiang, K Xie, Z Liu, H Chen, Y Cao, X Wang, C Shen
arXiv preprint arXiv:2303.17599, 2023arxiv.org
Large-scale text-to-image diffusion models achieve unprecedented success in image
generation and editing. However, how to extend such success to video editing is unclear.
Recent initial attempts at video editing require significant text-to-video data and computation
resources for training, which is often not accessible. In this work, we propose vid2vid-zero, a
simple yet effective method for zero-shot video editing. Our vid2vid-zero leverages off-the-
shelf image diffusion models, and doesn't require training on any video. At the core of our …
Large-scale text-to-image diffusion models achieve unprecedented success in image generation and editing. However, how to extend such success to video editing is unclear. Recent initial attempts at video editing require significant text-to-video data and computation resources for training, which is often not accessible. In this work, we propose vid2vid-zero, a simple yet effective method for zero-shot video editing. Our vid2vid-zero leverages off-the-shelf image diffusion models, and doesn't require training on any video. At the core of our method is a null-text inversion module for text-to-video alignment, a cross-frame modeling module for temporal consistency, and a spatial regularization module for fidelity to the original video. Without any training, we leverage the dynamic nature of the attention mechanism to enable bi-directional temporal modeling at test time. Experiments and analyses show promising results in editing attributes, subjects, places, etc., in real-world videos. Code will be made available at \url{https://github.com/baaivision/vid2vid-zero}.
arxiv.org
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